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Big Data és Oracle Machine Learning, az analitikus felhőben Nagyobb, jobb, gyorsabb, több! Fekete Zoltán Platform, principal sales consultant [email protected] Copyright © 2017 Oracle and/or its affiliates. All rights reserved. | Safe Harbor Statement The following is intended to outline our general product direction. It is intended for information purposes only, and may not be incorporated into any contract. It is not a commitment to deliver any material, code, or functionality, and should not be relied upon in making purchasing decisions. The development, release, and timing of any features or functionality described for Oracle’s products remains at the sole discretion of Oracle. Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Mi irányítunk? Sokszor halljuk, hallgass a megérzéseidre! Nos, ez egyre komplexebb. • „Légy szabad! Még mindig a szemed meg a füled akarod használni. Ne számítgass, használd a tudat alatti ösztöneidet.” • „Bízz az Erőben, Luke!” • „Csak az ösztöneidben bízz, Luke!” – Egy új remény, Csillagok háborúja, George Lucas Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Mi irányítunk még mindig? Kinek a döntése? https://www.scientificamerican.com/article/will-democracy-survive-big-data-and-artificial-intelligence/ • „Often the recommendations we are offered fit so well that the resulting decisions feel as if they were our own, even though they are actually not our decisions. In fact, we are being remotely controlled ever more successfully in this manner. The more is known about us, the less likely our choices are to be free and not predetermined by others.” • „The trend goes from programming computers z to programming people.” • „Search algorithms and recommendation systems can be influenced.” Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Szingularitás 2047-re? https://www.inverse.com/article/28386-singularity-2047 • „One of the chips in our shoes in the next 30 years will be smarter than our brain. We will be less than our shoes. And we are stepping on them.” • „I think this super intelligence is going to be our partner. If we misuse it, it’s a risk. If we use it in good spirits it will be our partner for a better life.”” – Masayoshi Son, Softbank Robotics CEO • Ray Kurzweil, Google, director of Engineering, futurológus: singularity to occur around 2045, 2050-re egy számítógép olyan intelligens lehet, mint az emberi agyak kombinációja Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Gartner's 2016 Hype Cycle for Emerging Technologies http://www.gartner.com/newsroom/id/3412017 Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | A teljes kép – Oracle Big Data + relációs megoldás DATA RESERVOIR DATA WAREHOUSE Cloudera Hadoop Oracle Big Data Connectors Oracle Big Data SQL Oracle NoSQL Oracle R Distribution, ORAA4H Oracle Data Integrator Oracle Big Data Spatial and Graph Oracle Database Oracle Database Oracle Industry In-Memory, Multitenant Models Oracle Industry Models Oracle Advanced Analytics Oracle Advanced Oracle Spatial & Graph Analytics Oracle Spatial & Graph Big Data Appliance Apache Flume Oracle GoldenGate Oracle Data Integrator SOURCES Oracle Event Processing Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Exadata Oracle GoldenGate Oracle Event Processing Oracle Database In-Memory Goals Real Time Analytics 100x Accelerate Mixed Workload OLTP No Changes to Applications Trivial to Implement 2x Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 8 Az analitikus lekérdezések gyorsítása Data Scans Joins In-Memory Aggregation STATE = CA CPU Vector Register SALES HASH JOIN CA CA CA CA • Speed of memory • Scan and Filter only the needed Columns • Vector Instructions Table A Table B •Convert Star Joins into 10X Faster Column Scans •Search large table for values that match small table •Create In-Memory Report Outline that is Populated during Fast Scan •Runs Reports Instantly Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Adat architektúra: Big Data Üzleti adat • • • • Adat folyamok Szociális háló/log adat Végrehajtás Innováció Enterprise adatok További források Alk./adat szolgáltatás API-k Gyors adatok Adat platform Lake Data Factory Analitika Warehouse Adat laboratórium Telematics Industry Services Internet of Things Sentiment BI/jelentés Model First & Analytics dashboard • Reporting-oriented • Often enterprise wide in scope, cross LoB • “you know the questions to ask” Adat felfedezés Data First Analytics • Data Exploration • Highly visual and/or interactive • “you don’t know the questions to ask” Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Oracle Confidential Minden felhasználó típushoz és tudáshoz Üzleti adat Adat folyamok Adatfolyam, gyors adat Apache Szociális háló/log adat Enterprise adatok Végrehajtás Innováció További források Oracle NoSQL Adat platform Apache Oracle Database & Big Data SQL Reservoir Factory & Governance Warehouse Oracle Data Integration Kutató laboratórium Oracle R R elemző SQL Developer Oracle Big Data Discovery Adat szolgáltatás API-k Oracle CAF & OEP • • • • Telematics Industry Services Internet of Things Sentiment Analitika Reports Model First& Analytics Dashboards Oracle Business Intelligence • Reporting-oriented • Often enterprise wide in scope, cross LoB • “you know the questions to ask” Oracle Big Data Discovery Data First Discovery Analytics Adattudós Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | • Data Exploration • Highly visual and/or interactive • “you don’t know the questions to ask” Oracle Confidential Vég-felh. Elemző 1 Big Data Appliance – fő tervezési/mérnöki szempontok Működtetési / install egyszerűség, HA Nagy teljesítmény, minden adatot, BD SQL Nyílt analitikai platform Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 1 Big Data Appliance X6-2 azonnal bevethető teljes környezet 6 szervertől tetszőlegesen bővíthető Sun Oracle X6-2L Servers, szerverenként: • 2 * 22 Core, 256 GB - 768 GB mem. , 96 TB Disk Telepített szoftver (BDA 4.7,2016. dec.): • Oracle Linux, UEK 4 on OL 6 • Oracle Big Data SQL 3.1* • Cloudera Distribution of Apache Hadoop CDH 5.9.0 – EDH Edition • Cloudera Manager 5.9.0 • Oracle R Distribution • Oracle NoSQL Database CE 4.2.9 – JDK 8u111, MySQL 5.6.34 * Oracle Big Data SQL is separately licensed Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 1 Oracle Cloud Platform for Big Data COLLECT MANAGE EXPERIMENT DataFlow ML CS Big Data Preparation CS IoT CS GoldenGate CS Event Hub CS Data Integration CS Big Data CS NoSQL Database CS Big Data CS CE Big Data SQL CS NoSQL Database CS Exadata CS Big Data Discovery CS Stream Analytics CS* R on Hadoop* Spatial and Graph* ANALYZE & ACT Data Visualization CS Business Intelligence CS Spatial and Graph* Advanced Analytics* R on Hadoop* * Bundled with other Cloud Services Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 1 Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 1 Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 1 Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 1 Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 1 Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 1 Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 2 Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 2 Oracle Management Cloud egyesített intelligens platform, együttműködő szolgáltatások Application Performance Monitoring Monitor real and synthetic users and application performance Infrastructure Monitoring Monitor database and cross-tier infrastructure performance Security Monitoring and Analytics Orchestration New in 2017 New in 2017 Execute automated remediation and other tasks at cloud scale Detect, investigate, and remediate full range of security threats Configuration & Compliance IT Analytics New in 2017 Log Analytics Analyze business and IT data using pre-built apps and explorers Manage configuration and change against industry and own standards Aggregate, index, and explore the entire enterprise log estate Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 2 Management Cloud - Machine Learning támogatással heterogén forrásokkal END USER EXPERIENCE APPLICATION MIDDLE TIER DATA TIER VIRTUALIZATION TIER INFRASTRUCTURE TIER VM VM CONTAINER CONTAINER 01100100 01100001 01110100 01100001 0110010001100001 01110100 0100 01100001 01100100 01100001 01110100 01100001 0110010001100001 01011 01110100 110000101100100 01100001 01110100 110000101100100 01100001 01110100 01100001 Global Threat Feeds CASB 0110010001100001 01110100 110000101100100 0100111 01100001 01110100 ANOMALY DETECTION Identity ✔ 110000101100100 01100001 01110100 01100001 011010 0110010001100001 01110100 Real Users 01100001 0110010001100001 01110100 01001 01100001 0110010001100001 01110100 Synthetic Users 01100001 0110010001100001 01001 01110100 01100001 0110010001100001 01110100 App metrics CLUSTERING 01100001 01100001 0110010001100001 Transactions 0100101001 001 0110010001100001 01110100 ✔ 01110100 010011 01100001 0110010001100001 01110100 01100001 01100100 01100001 Server metrics 01001 01110100 01100001 0110010001100001 01110100 01100001 01100100 0100 01100001 Diagnostics Logs 01110100 01100001 0110010001100001 01110100 01000100 110000101100100 ✔ 0100CORRELATION 01100001 Host metrics 01110100 110000101100100 01100001 01110100 01100001 0110010001100001 VM metrics 110000101100100 01100001 010001 01110100 110000101100100 01100001 01110100 Container metrics 01110100 01100001 01000100 010011 0110010001100001 01110100 01100001 PREDICTION ✔ CMDB/Compliance 0110010001100001 01110100 01000 01110100 110000101100100 01100001 01110100 Unified Platform Tickets 01100001 01000100 010011 0110010001100001 01110100 01100001 0110010001100001 Alerts 01110100 010011 Security Events Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 2 “Oracle is also working to integrate cutting-edge technologies such as machine learning into business applications across industries.” – Mark Hurd, CEO Oracle 2017. március 21., Oracle Industry Connect Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Confidential – Oracle 2 „Prediktív” enterprise alkalmazások Oracle Advanced Analytics az Oracle alkalmazásokban, példák • Oracle HCM Fusion – Employee turnover and performance prediction and “What if?” analysis • Oracle CRM Fusion – Prediction of sales opportunities, what to sell, amount, timing, etc. • Oracle Industry Data Models – Communications Data Model churn prediction, segmentation, profiling, etc. – Retail Data Model loyalty and market basket analysis – Airline Data Model analysis frequent flyers, loyalty, etc. – Utilities Data Model customer churn, cross-sell, loyalty, etc. • Oracle Retail Insights Cloud Services – Market Basket Analysis Insights – Customer Insights & Clustering • Oracle Customer Support – Predictive Incident Monitoring (PIM) • Oracle Spend Classification – Real-time and batch flagging of noncompliance and anomalies in expense submissions • Oracle FinServ Analytic Applications – Customer Insight, Enterprise Risk Management, Enterprise Performance, Financial Crime and Compliance • Oracle Adaptive Access Manager – Real-time security and fraud analytics Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | What is Machine Learning, Data Mining & Predictive Analytics? Automatically sifting through large amounts of data to create models that find previously hidden patterns, discover valuable new insights and make predictions •Identify most important factor (Attribute Importance) •Predict customer behavior (Classification) •Predict or estimate a value (Regression) •Find profiles of targeted people or items (Decision Trees) •Segment a population (Clustering) •Find fraudulent or “rare events” (Anomaly Detection) •Determine co-occurring items in a “baskets” (Associations) Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | A1 A2 A3 A4 A5 A6 A7 Oracle’s Advanced Analytics and Machine Learning Platform Multiple interfaces across platforms — SQL, R, GUI, Dashboards, Apps Information Producers Users R programmers R Client Platform Data & Business Analysts Business Analysts/Mgrs Domain End Users (HCM, CRM) SQLDEV/ Oracle Data Miner OBIEE/DV Applications Big Data SQL Hadoop HQL Information Consumers ORAAH Parallel, distributed algorithms Oracle Database Enterprise Edition Oracle Advanced Analytics - Database Option SQL Data Mining, ML & Analytic Functions + R Integration for Scalable, Distributed, Parallel in-DB ML Execution Oracle Cloud Copyright © 2017, Oracle and/or its affiliates. All rights reserved. | Oracle Database 12c UK National Health Service Combating Healthcare Fraud Objectives Use new insight to help identify cost savings and meet goals Identify and prevent healthcare fraud and benefit eligibility errors to save costs Leverage existing data to transform business and productivity “Oracle Advanced Analytics’ data mining capabilities and Oracle Exalytics’ performance really impressed us. The overall solution is very fast, and our investment very quickly provided value. We can now do so much more with our data, resulting in significant savings for the NHS as a whole” – Nina Monckton, Head of Information Services, NHS Business Services Authority Solution Identified up to GBP100 million (US$156 million) potentially Update: £300M confirmed fraud £400+M additional potential identified saved through benefit fraud and error reduction Used anomaly detection to uncover fraudulent activity where some dentists split a single course of treatment into multiple parts and presented claims for multiple treatments Looking to Cloud now…. Analyzed billions of records at one time to measure longerterm patient journeys and to analyze drug prescribing patterns Oracle Exadata Database to improve patient care Machine Oracle Advanced Analytics Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Oracle Exalytics In-Memory Machine Oracle Endeca Information Discovery Oracle Business Intelligence EE Oracle Advanced Analytics DB Option In-Database Machine Learning Algorithms*—SQL & Classification • Decision Tree • Logistic Regression (GLM) • Naïve Bayes • Support Vector Machine (SVM) • Random Forest Regression • Multiple Regression (GLM) • Support Vector Machine (SVM) • Stepwise Linear Regression • Linear Model • Generalized Linear Model • Multi-Layer Neural Networks Anomaly Detection • 1-Class Support Vector Machine Advanced Analytics & GUI Access Clustering Predictive Queries • Hierarchical k-Means • Orthogonal Partitioning Clustering • Expectation-Maximization Attribute Importance • Minimum Description Length • Unsupervised pair-wise KL div. A1 A2 A3 A4 A5 A6 A7 Market Basket Analysis • Apriori – Association Rules Text Mining • All OAA/ODM SQL ML support • Explicit Semantic Analysis • Clustering • Regression • Anomaly Detection • Feature Extraction Feature Extraction & Creation • Nonnegative Matrix Factorization • Principal Component Analysis • Singular Value Decomposition Time Series • Single & Double Exp. Smoothing Open Source R Algorithms • Ability to run any R package (9,000+)via Embedded R mode + Ability to Mine Unstructured, Structured & Transactional data + Partitioned Models Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Oracle R Advanced Analytics for Hadoop AA Algorithms in a Hadoop Cluster: Map-Reduce and Spark (2.7) Classification GLM ORAAH Logistic Regression ORAAH Regression MLP Neural Networks ORAAH Ridge Regression Decision Trees Support Vector Machines Gaussian Mixture Models Clustering K-Means K-Means Non-negative Matrix Factorization LASSO Random Forests Support Vector Machines Feature Extraction Collaborative Filtering (LMF) Attribute Importance Random Forest Linear Regression Basic Statistics Principal Components Analysis Principal Components Analysis Correlation/Covariance Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | LASSO 30 Oracle’s Advanced Analytics Prediktív analitika, „kódot az adatokhoz” Key Features Párhuzamos, skálázható, R integr. In-Database + Hadoop Elemzők, adattudósok, fejlesztők D&D workflow, R és SQL API Data Miner GUI Adat menedzsment kiterjesztése fejlett prediktív platformmá SQL generálás gombnyomásra, azonnali beépítés alkalmazásba Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Advanced Analytics You Can Think of Oracle Advanced Analytics Like This… Traditional SQL SQL Statistical Functions - SQL & – “Human-driven” queries – Domain expertise – Any “rules” must be defined and managed SQL Queries – SELECT – DISTINCT – Automated knowledge discovery, model building and deployment – Domain expertise to assemble the “right” data to mine/analyze + Statistical SQL “Verbs” – MEAN, STDEV – MEDIAN – AGGREGATE – SUMMARY – WHERE – CORRELATE – AND OR – FIT – GROUP BY – COMPARE – ORDER BY – ANOVA – RANK Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | FREE! You Can Think of Oracle’s Advanced Analytics Like This… Traditional SQL Oracle Advanced Analytics - SQL & – “Human-driven” queries – Domain expertise – Any “rules” must be defined and managed SQL Queries – SELECT – DISTINCT – Automated knowledge discovery, model building and deployment – Domain expertise to assemble the “right” data to mine/analyze + Analytical SQL “Verbs” – PREDICT – DETECT – AGGREGATE – CLUSTER – WHERE – CLASSIFY – AND OR – REGRESS – GROUP BY – PROFILE – ORDER BY – IDENTIFY FACTORS – RANK – ASSOCIATE Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Advanced Analytics Masszívan párhuzamos SQL: DB, Hadoop és NoSQL Big Data SQL + Advanced Analytics Oracle Big Data Appliance Oracle Database 12c Data Analysts SQL / R JSON Structured and Unstructured Data Reservoir • JSON data • HDFS / Hive • NoSQL • Spatial and Graph data • Image and Video data • Social Media Store business-critical data in Oracle • Customer data • Transactional data • Unstructured documents, comments • Spatial and Graph data • Image and Video data • Social Media Data analyzed via SQL / R / GUI • R Clients • SQL Clients • Oracle Data Miner Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Oracle Advanced Analytics Real-Time Scoring, Predictions and Recommendations • On-the-fly, single record apply with new data (e.g. from call center) Select prediction_probability(CLAS_DT_1_64, 'Yes' USING 7800 as bank_funds, 125 as checking_amount, 20 as credit_balance, 55 as age, 'Married' as marital_status, 250 as MONEY_MONTLY_OVERDRAWN, 1 as house_ownership) from dual; Social Media Call Center Likelihood to respond: Get AdviceBranch Office R Mobile Web Email Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | R: Transparency via function overloading Advanced Analytics Invoke in-database aggregation function > aggdata <- aggregate(ONTIME_S$DEST, + by = list(ONTIME_S$DEST), + FUN = length) Oracle Advanced Analytics ORE Client Packages Transparency Layer > class(aggdata) [1] "ore.frame" attr(,"package") [1] "OREbase" > head(aggdata) Group.1 x 1 ABE 237 2 ABI 34 3 ABQ 1357 4 ABY 10 5 ACK 3 6 ACT 33 Oracle SQL select DEST, count(*) from ONTIME_S group by DEST Oracle Database In-db Stats ONTIME_S Database Server Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | ORAAH: Machine Learning in Spark against HDFS data Invoke ORAAH custom parallel distributed GLM Model using Spark Caching Oracle Distribution of R version 3.1.1 (--) -- "Sock it to Me" > Connects to Spark > spark.connect("yarn-client",memory="24g") > # Attaches the HDFS file for use within R > ont1bi <- hdfs.attach("/user/oracle/ontime_1bi") Oracle R Advanced Analytics for Hadoop Client Packages YARN: Apache Spark Job 1 Spark-Based Machine Learning algorithms module > # Formula definition: Cancelled flights (0 or 1) based on other attributes > form_oraah_glm2 <- CANCELLED ~ DISTANCE + ORIGIN + DEST + F(YEAR) + F(MONTH) + + F(DAYOFMONTH) + F(DAYOFWEEK) 5 > system.time(m_spark_glm <- orch.glm2(formula=form_oraah_glm2, ont1bi)) ORCH GLM: processed 6 factor variables, 25.806 sec ORCH GLM: created model matrix, 100128 partitions, 32.871 sec ORCH GLM: iter 1, deviance 1.38433414089348300E+09, elapsed time 9.582 sec ORCH GLM: iter 2, deviance 3.39315388583931150E+08, elapsed time 9.213 sec ORCH GLM: iter 3, deviance 2.06855738812683250E+08, elapsed time 9.218 sec ORCH GLM: iter 4, deviance 1.75868100359263200E+08, elapsed time 9.104 sec ORCH GLM: iter 5, deviance 1.70023181759611580E+08, elapsed time 9.132 sec ORCH GLM: iter 6, deviance 1.69476890425481350E+08, elapsed time 9.124 sec ORCH GLM: iter 7, deviance 1.69467586045954760E+08, elapsed time 9.077 sec ORCH GLM: iter 8, deviance 1.69467574351380850E+08, elapsed time 9.164 sec user system elapsed 84.107 5.606 143.591 Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 2 4 Custom Spark Java Algorithm Custom Spark Java Algorithm distributed in-Memory Computation distributed in-Memory Computation 3 /user/oracle/ontime_s Big Data Analytics using w Graph Oracle Advanced Analytics/Machine Learning with Enhanced Graph & Spatial Data Sources • Add new engineered features Transactional network relationships data – Percentage time spent in zones – Amount time/encounters with persons of interest • Better predictions using available dataTransactional – At risk customers – Government approval processes – Medical claims – IoT predictive analytics geo-location data summarized to % time spent in areas or number of “hits” near a location Better data and “engineered features”; better predictive models and predictive insights Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | What is a “notebook” • Web-based – accessible by browser • Enables interactive data analytics • Produces appealing data-driven and collaborative documents • Integrates formatted notes with your code Copyright © 2017, Oracle and/or its affiliates. All rights reserved. | Mesterséges intelligencia, AI – szervezetileg? https://www.wsj.com/articles/how-artificial-intelligence-will-change-everything-1488856320?mod=e2fb • „ a chief AI officer or a VP—to sort this out for them. Recruiting AI talent is so difficult that having a centralized AI function would be the best way to have consistent hiring and promotion and management standards for an AI team. This team can then work cross-functionally ...” – Andrew Ng, chief scientist, Baidu • „I believe in the power of small, interdisciplinary teams that have support high up in the corporation... It’s very important to match the speed of the technology with the nimbleness of the teams. And having a centralized AI guru at the top,... is unlikely to be as fast and effective as having a decentralized organization with powerful teams, with real talent.” – Neil Jacobstein, Singularity University Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Getting started: OAA Links and Resources Oracle Advanced Analytics Overview: OAA presentation— Big Data Analytics with Oracle Advanced Analytics …or just watch Watch YouTube video presentation and demo(s) Big Data Analytics with Oracle Advanced Analytics: Making Big Data and Analytics Simple white paper on OTN Oracle Internal OAA Product Management Wiki and Workspace Oracle Advanced Analytics Customer Successes YouTube recorded OAA Presentations and Demos: Oracle Advanced Analytics and Data Mining at the YouTube Movies (6 + OAA “live” Demos on ODM’r 4.0 New Features, Retail, Fraud, Loyalty, Overview, etc.) Getting Started: Link to OAA/Oracle Data Miner Workflow GUI Online (free) Tutorial Series on OTN Link to OAA/Oracle R Enterprise (free) Tutorial Series on OTN Link to Free Oracle Advanced Analytics "Test Drives" on Oracle Cloud via Vlamis Partner Link to Getting Started w/ ODM blog entry Link to New OAA/Oracle Data Mining 2-Day Instructor Led Oracle University course. Oracle Data Mining Sample Code Examples Additional Resources: Oracle Advanced Analytics Option on OTN page OAA/Oracle Data Mining on OTN page, ODM Documentation & ODM Blog OAA/Oracle R Enterprise page on OTN page, ORE Documentation & ORE Blog Oracle SQL based Basic Statistical functions on OTN Oracle R Advanced Analytics for Hadoop (ORAAH) on OTN Business Intelligence, Warehousing & Analytics—BIWA Summit’17, Jan 31, Feb 1 & 2, 2017 at Oracle HQ Conference Center (w/ links to customer presentations) Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | Copyright © 2016, Oracle and/or its affiliates. All rights reserved. | 4